Department of Computer Science & Engineering, Sunder Deep Engineering College, Ghaziabad, UP 201002, India.
Department of Information Technology, ABES Engineering College, Ghaziabad, UP 201009, India.
Comput Intell Neurosci. 2022 Mar 24;2022:2206573. doi: 10.1155/2022/2206573. eCollection 2022.
In today's environment, electronics technology is growing rapidly because of the availability of the numerous and latest devices which can be deployed for monitoring and controlling the various healthcare systems. Due to the limitations of such devices, there is a dire need to optimize the utilization of the devices. In healthcare systems, Internet of things (IoT) based biosensors networking has minimal energy during transmission and collecting data. This paper proposes an optimized artificial intelligence system using IoT biosensors networking for healthcare problems for efficient data collection from the deployed sensor nodes. Here, an optimized tunicate swarm algorithm is used for optimizing the route for data collection and transmission among the patient and doctor. The fitness function of the optimized tunicate swarm algorithm used the distance, proximity, residual, and average energy of nodes parameters. The proposed method is attributed to the optimal CH chosen under TSA operation having a lower energy consumption. The performance of the proposed method is compared to the existing methods in terms of various metrics like stability period, lifetime, throughput, and clusters per round.
在当今的环境下,由于大量最新设备的可用性,电子技术发展迅速,这些设备可用于监测和控制各种医疗保健系统。由于这些设备的局限性,迫切需要优化设备的利用。在医疗保健系统中,基于物联网 (IoT) 的生物传感器网络在传输和收集数据时的能量消耗最小。本文提出了一种使用 IoT 生物传感器网络的优化人工智能系统,用于解决医疗保健问题,以便从部署的传感器节点高效地收集数据。在这里,使用优化的藤壶群算法来优化数据收集和在患者和医生之间传输的路由。优化的藤壶群算法的适应度函数使用了节点参数的距离、接近度、剩余和平均能量。所提出的方法归因于 TSA 操作下选择的最佳 CH,其具有更低的能量消耗。所提出的方法在稳定性周期、寿命、吞吐量和每轮簇数等各种指标方面与现有方法进行了比较。